Neuromorphic circuits aim at emulating biological spiking neurons in silicon hardware. Neurons can be implemented either as analog or digital components. While the respective advantages of each approach are well known, i.e., digital designs are more simple but analog neurons are more energy efficient, there exists no clear and precise quantitative comparison of both designs. In this paper, we compare the digital and analog implementations of the same Leaky Integrate-and-Fire neuron model at the same technology node (CMOS 65 nm) with the same level of performance (SNR and maximum spiking rate), in terms of area and energy. We show that the analog implementation requires 5 times less area, and consumes 20 times less energy than the digital de...
By combining neurophysiological principles with silicon engineering, we have produced an analog inte...
International audienceWe introduce an ultra-compact electronic circuit that realizes the leaky-integ...
A few individual design examples of programmable device-based biological neuron model implementation...
Hardware implementations of spiking neurons can be extremely useful for a large variety of applicati...
Hardware implementations of spiking neurons can be extremely useful for a large variety of applicati...
© 2022 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Developing mixed-signal analog-digital neuromorphic circuits in advanced scaled processes poses sign...
Abstract—We implement a digital neuron in silicon using delay-insensitive asynchronous circuits. Our...
International audienceAs Moore's law reaches its end, traditional computing technology based on the ...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...
Cortical circuits in the brain have long been recognised for their information processing capabiliti...
The neural computation field had finally delivered on its promises in 2013 when the University of To...
To process data operations more efficiently in deep neural networks (DNNs), studies on spiking neura...
Continuous improvements in the VLSI domain have enabled the technology to mimic the neuro biological...
Abstract. We describe an improved spiking silicon neuron (SN) [6] that approximates the dynamics of ...
By combining neurophysiological principles with silicon engineering, we have produced an analog inte...
International audienceWe introduce an ultra-compact electronic circuit that realizes the leaky-integ...
A few individual design examples of programmable device-based biological neuron model implementation...
Hardware implementations of spiking neurons can be extremely useful for a large variety of applicati...
Hardware implementations of spiking neurons can be extremely useful for a large variety of applicati...
© 2022 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Developing mixed-signal analog-digital neuromorphic circuits in advanced scaled processes poses sign...
Abstract—We implement a digital neuron in silicon using delay-insensitive asynchronous circuits. Our...
International audienceAs Moore's law reaches its end, traditional computing technology based on the ...
This paper discusses some of the limitations of hardware implementations of neural networks. The aut...
Cortical circuits in the brain have long been recognised for their information processing capabiliti...
The neural computation field had finally delivered on its promises in 2013 when the University of To...
To process data operations more efficiently in deep neural networks (DNNs), studies on spiking neura...
Continuous improvements in the VLSI domain have enabled the technology to mimic the neuro biological...
Abstract. We describe an improved spiking silicon neuron (SN) [6] that approximates the dynamics of ...
By combining neurophysiological principles with silicon engineering, we have produced an analog inte...
International audienceWe introduce an ultra-compact electronic circuit that realizes the leaky-integ...
A few individual design examples of programmable device-based biological neuron model implementation...